Model Calibration of the Liquid Mercury Spallation Target using Evolutionary Neural Networks and Sparse Polynomial Expansions
Majdi I. Radaideh, Hoang Tran, Lianshan Lin, Hao Jiang, Drew Winder,, Sarma Gorti, Guannan Zhang, Justin Mach, Sarah Cousineau

TL;DR
This paper introduces two machine learning-based methods for calibrating the mercury spallation target model using experimental data, significantly improving simulation accuracy and aiding in target lifetime prediction.
Contribution
It presents novel interdisciplinary approaches employing evolutionary neural networks and sparse polynomial expansions for surrogate-based calibration of complex simulations.
Findings
7% average improvement in signal prediction accuracy
8% reduction in mean absolute error
Up to 30% improvement for some sensors
Abstract
The mercury constitutive model predicting the strain and stress in the target vessel plays a central role in improving the lifetime prediction and future target designs of the mercury targets at the Spallation Neutron Source (SNS). We leverage the experiment strain data collected over multiple years to improve the mercury constitutive model through a combination of large-scale simulations of the target behavior and the use of machine learning tools for parameter estimation. We present two interdisciplinary approaches for surrogate-based model calibration of expensive simulations using evolutionary neural networks and sparse polynomial expansions. The experiments and results of the two methods show a very good agreement for the solid mechanics simulation of the mercury spallation target. The proposed methods are used to calibrate the tensile cutoff threshold, mercury density, and mercury…
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Taxonomy
MethodsSPEED: Separable Pyramidal Pooling EncodEr-Decoder for Real-Time Monocular Depth Estimation on Low-Resource Settings
